Bug was fixed in roc_curve_survival()
where wrong weights were used. (#495, @asb2111).
Output of roc_curve_survival()
now returns columns in same order as roc_curve()
. (#498)
The Brier score for survival data was added with brier_survival()
.
The Integrated Brier score for survival data was added with brier_survival_integrated()
.
The Concordance index for survival data was added with concordance_survival()
.
Time-Dependent ROC curves estimation for right-censored data can now be
calculated with roc_curve_survival()
.
Time-Dependent ROC AUC estimation for right-censored data can now be
calculated with roc_auc_survival()
.
demographic_parity()
, equalized_odds()
, and equal_opportunity()
are new metrics for measuring model fairness. Each is implemented with the new_groupwise_metric()
constructor, a general interface for defining group-aware metrics that allows for quickly and flexibly defining fairness metrics with the problem context in mind.
metric_set()
can now be used with a combination of dynamic and static survival metrics.
Added a print method for metrics and metric sets (#435).
All warnings and errors have been updated to use the cli package for increased clarity and consistency. (#456, #457, #458)
brier_survival_integrated()
now throws an error if input data only includes 1 evalution time point. (#460)
Clarifying documentation about how event_level
always default to "first
. (#432)
estimate
argument is wrongly used. (#443)NA
when missing values are found and na_rm = FALSE
. (#344)brier_class()
(#139).The global option, yardstick.event_first
, has been hard deprecated in favor
of using explicit argument, event_level
. Setting this option will now
produce an warning, but won't have any effect. (#173)
Removed start-up message about event_level
argument.
yardstick metric functions now use a pure tidyselect interface for truth
,
estimate
, and the ...
of class probability metrics (#322).
Changed the default aspect ratio for PR curves to be 1.0.
Error messages now show what user-facing function was called (#348).
classification and probability metrics now fully support class_pred
objects
from {probably} package (#341).
Using metric_set()
on a metric created with metric_tweak()
will no longer
produces an error, and will favor arguments set with metric_tweak()
(#351).
Metric summarizers no longer error if column names in data
conflict with
argument names (#382).
conf_mat()
no longer throw errors listed as internal (#327).
metric_vec_template()
is being soft deprecated in favor of a more manual
and flexible metric creation approach. yardstick_remove_missing()
and
yardstick_any_missing()
have been added for treatment of missing values.
check_class_metric()
, check_numeric_metric()
,
and check_prob_metric()
have been added to perform standardized input
checking for classification, regression and class probability metrics
respectively. These changes mean that it is the developer's responsibility
to perform validation of truth
and estimate
input. (#337).
metric_summarizer()
is being soft deprecated in favor of the more specific
newly added class_metric_summarizer()
, numeric_metric_summarizer()
,
prob_metric_summarizer()
, and curve_metric_summarizer()
(#322).
dots_to_estimate()
is being soft deprecated along with
metric_summarizer()
. dots_to_estimate()
is not needed with
prob_metric_summarizer()
, and curve_metric_summarizer()
(#329).
Emil Hvitfeldt is now the maintainer (#315).
Improved on the chained error thrown by metric_set()
when one of the metric
computations fails (#313).
All yardstick metrics now support case weights through the new case_weights
argument. This also includes metric-adjacent functions like roc_curve()
,
pr_curve()
, conf_mat()
, and metric_set()
.
The options
argument of roc_curve()
, roc_auc()
, roc_aunp()
,
roc_aunu()
, and metrics()
that was passed along to the pROC package is
now deprecated and no longer has any affect. This is a result of changing to
an ROC curve implementation that supports case weights, but does not support
any of the previous options. If you need these options, we suggest wrapping
pROC yourself in a custom metric (#296).
conf_mat()
now ignores any inputs passed through ...
and warns if you
try to do such a thing. Previously, those were passed on to base::table()
,
but with the addition of case weight support, table()
is no longer used
(#295).
Fixed a small mistake in ccc()
where the unbiased covariance wasn't being
used when bias = FALSE
.
j_index()
now throws a more correct warning if 0
is in the denominator
when computing sens()
internally. Additionally, in the multiclass case it
now removes the levels where this occurs from the multiclass weighted average
computation, which is consistent with how other metrics were updated to handle
this in #118 (#265).
Improved on some possible ambiguity in the documentation of the data
argument for all metrics (#255).
purrr has been removed from Suggests.
The pROC package has been removed as a dependency (#300).
Moved the Custom Metrics vignette to tidymodels.org (#236).
New metric poisson_log_loss()
was added (#146).
sensitivity()
and specificity()
now work correctly with the tune and
workflowsets packages (#232).
roc_curve()
now throws a more informative error if truth
doesn't have any
control or event observations.
dplyr 1.0.0 is now required. This allowed us to remove multiple usages of
dplyr::do()
in favor of dplyr::summarise()
, which can now return packed
data frame columns and multiple rows per group.
Removed internal hardcoding of "dplyr_error"
to avoid issues with an
upcoming dplyr 1.0.8 release (#244).
Updated test suite to testthat 3e (#243).
Internal upkeep has been done to move from rlang::warn(.subclass = )
to
rlang::warn(class = )
, since the .subclass
argument has been deprecated
(#225).
New metric_tweak()
for adjusting the default values of optional arguments in
an existing yardstick metric. This is useful to quickly adjust the defaults
of a metric that will be included in a metric_set()
, especially if that
metric set is going to be used for tuning with the tune package (#206, #182).
New classification_cost()
metric for computing the cost of a poor class
probability prediction using user-defined costs (#3).
New msd()
for computing the mean signed deviation (also called mean
signed difference, or mean signed error) (#183, @datenzauberai).
class_pred
objects from the probably
package are now supported, and are automatically converted to factors before
computing any metric. Note that this means that any equivocal values are
materialized as NA
(#198).
The kap()
metric has a new weighting
argument to apply linear or
quadratic weightings before computing the kappa value (#2, #125, @jonthegeek).
When sens()
is undefined when computing ppv()
, npv()
, j_index()
, or
bal_accuracy()
, a sensitivity warning is now correctly thrown, rather than
a recall warning (#101).
The autoplot()
method for gain curves now plots the curve line
on top of the shaded polygon, resulting in a sharper look for the
line itself (#192, @eddjberry).
The autoplot()
methods for conf_mat
now respect user-defined dimension
names added through conf_mat(dnn = )
or from converting a table with
dimension names to a conf_mat
(#191).
Added an as_tibble()
method for metric_set
objects. Printing a
metric_set
now uses this to print out a tibble rather than a data frame
(#186).
Re-licensed package from GPL-2 to MIT. See consent from copyright holders here (#204).
yardstick.event_first
, has been deprecated in favor of
the new explicit argument, event_level
. All metric functions that previously
supported changing the "event" level have gained this new argument.
The global option was a historical design decision that can be classified as
a case of a hidden argument.
Existing code that relied on this global option will continue to work in this
version of yardstick, however you will now get a once-per-session warning
that requests that you update to instead use the explicit event_level
argument. The global option will be completely removed in a future version.
To update, follow the guide below (#163).`options(yardstick.event_first = TRUE)` -> `event_level = "first"` (the default)
`options(yardstick.event_first = FALSE)` -> `event_level = "second"`
The roc_auc()
Hand-Till multiclass estimator will now ignore levels in
truth
that occur zero times in the actual data. With other methods of
multiclass averaging, this usually returns an NA
, however, ignoring
levels in this manner is more consistent with implementations in the
HandTill2001 and pROC packages (#123).
roc_auc()
and roc_curve()
now set direction = "<"
when computing the
ROC curve using pROC::roc()
. Results were being computed incorrectly with
direction = "auto"
when most probability values were predicting the wrong
class (#123).
mn_log_loss()
now respects the (deprecated) global option
yardstick.event_first
. However, you should instead change the relevant
event level through the event_level
argument.
metric_set()
now strips the package name when auto-labeling functions
(@rorynolan, #151).
There are three new helper functions for more easily creating custom
metric functions: new_class_metric()
, new_prob_metric()
, and
new_numeric_metric()
.
Rcpp has been removed as a direct dependency.
roc_auc()
now warns when there are no events or controls in the provided truth
column, and returns NA
(@dpastling, #132).
Adds sensitivity()
and specificity()
as aliases for sens()
and spec()
respectively, avoids conflict with other packages e.g. readr::spec()
.
roc_aunu()
and roc_aunp()
are two new ROC AUC metrics for multiclass classifiers. These measure the AUC of each class against the rest, roc_aunu()
using the uniform class distribution (#69) and roc_aunp()
using the a priori class distribution (#70).
The autoplot()
heat map for confusion matrices now places the predicted values on the x
axis and the truth values on the y
axis to be more consistent with the confusion matrix print()
method.
The autoplot()
mosaic plot for confusion matrices had the x
and y
axis labels backwards. This has been corrected.
iic()
is a new numeric metric for computing the index of ideality of correlation. It can be seen as a potential alternative to the traditional correlation coefficient, and has been used in QSAR models (@jyuu, #115).
average_precision()
is a new probability metric that can be used as an alternative to pr_auc()
. It has the benefit of avoiding any issues of ambiguity in the case where recall == 0
and the current number of false positives is 0
.
metric_set()
output now includes a metrics
attribute which contains a list of the original metric functions used to generate the metric set.
Each metric function now has a direction
attribute attached to it, specifying whether to minimize or maximize the metric.
Classification metrics that can potentially have a 0
value denominator now throw an informative warning when this case occurs. These include recall()
, precision()
, sens()
, and spec()
(#98).
The autoplot()
method for pr_curve()
has been improved to always set the axis limits to c(0, 1)
.
All valid arguments to pROC::roc()
are now utilized, including those passed on to pROC::auc()
.
Documentation for class probability metrics has been improved with more informative examples (@rudeboybert, #100).
mn_log_loss()
now uses the min/max rule before computing the log of the estimated probabilities to avoid problematic undefined log values (#103).
pr_curve()
now places a 1
as the first precision value, rather than NA
. While NA
is technically correct as precision is undefined here, 1
is practically more correct because it generates a correct PR Curve graph and, more importantly, allows pr_auc()
to compute the correct AUC.
pr_curve()
could generate the wrong results in the somewhat rare case when two class probability estimates were the same, but had different truth values.
pr_curve()
(and subsequently pr_auc()
) now generates the correct curve when there are duplicate class probability values (reported by @dariyasydykova, #93).
Binary mcc()
now avoids integer overflow when the confusion matrix elements are large (#108).
mase()
is a numeric metric for the mean absolute scaled error. It is
generally useful when forecasting with time series (@alexhallam, #68).
huber_loss()
is a numeric metric that is less sensitive to outliers than
rmse()
, but is more sensitive than mae()
for small errors (@blairj09, #71).
huber_loss_pseudo()
is a smoothed form of huber_loss()
(@blairj09, #71).
smape()
is a numeric metric that is based on percentage errors
(@riazhedayati, #67).
conf_mat
objects now have two ggplot2::autoplot()
methods for easy visualization
of the confusion matrix as either a heat map or a mosaic plot (@EmilHvitfeldt, #10).
metric_set()
now returns a classed function. If numeric metrics are used,
a "numeric_metric_set"
function is returned. If class or probability metrics
are used, a "class_prob_metric_set"
is returned.Tests related to the fixed R 3.6 sample()
function have been fixed.
f_meas()
propagates NA
values from precision()
and recall()
correctly (#77).
All "micro"
estimators now propagate NA
values through correctly.
roc_auc(estimator = "hand_till")
now correctly computes the metric when the column names of the probability matrix are not the exact same as the levels of truth
. Note that the computation still assumes that the order of the supplied probability matrix columns still matches the order of levels(truth)
, like other multiclass metrics (#86).
A desire to standardize the yardstick API is what drove these breaking changes. The output of each metric is now in line with tidy principles, returning a tibble rather than a single numeric. Additionally, all metrics now have a standard argument list so you should be able to switch between metrics and combine them together effortlessly.
All metrics now return a tibble rather than a single numeric value. This format
allows metrics to work with grouped data frames (for resamples). It also allows
you to bundle multiple metrics together with a new function, metric_set()
.
For all class probability metrics, now only 1 column can be passed to ...
when a binary implementation is used. Those metrics will no longer select
only the first column when multiple columns are supplied, and will instead
throw an error.
The summary()
method for conf_mat
objects now returns a tibble
to be consistent with the change to the metric functions.
For naming consistency, mnLogLoss()
was renamed to mn_log_loss()
mn_log_loss()
now returns the negative log loss for the
multinomial distribution.
The argument na.rm
has been changed to na_rm
in all metrics to align
with the tidymodels
model implementation principles.
Each metric now has a vector interface to go alongside the data frame interface.
All vector functions end in _vec()
. The vector interface accepts vector/matrix
inputs and returns a single numeric value.
Multiclass support has been added for each classification metric.
The support varies from one metric to the next, but generally macro and micro
averaging is available for all metrics, with some metrics having specialized
multiclass implementations (for example, roc_auc()
supports the
multiclass generalization presented in a paper by Hand and Till).
For more information, see vignette("multiclass", "yardstick")
.
All metrics now work with grouped data frames. This produces a tibble with as many rows as there are groups, and is useful when used alongside resampling techniques.
mape()
calculates the mean absolute percent error.
kap()
is a metric similar to accuracy()
that calculates Cohen's kappa.
detection_prevalence()
calculates the number of predicted positive events
relative to the total number of predictions.
bal_accuracy()
calculates balanced accuracy as the average of sensitivity
and specificity.
roc_curve()
calculates receiver operator curves and returns the results as
a tibble.
pr_curve()
calculates precision recall curves.
gain_curve()
and lift_curve()
calculate the information used
in gain and lift curves.
gain_capture()
is a measure of performance similar in spirit to AUC
but applied to a gain curve.
pr_curve()
, roc_curve()
, gain_curve()
and lift_curve()
all have
ggplot2::autoplot()
methods for easy visualization.
metric_set()
constructs functions that calculate
multiple metrics at once.
The infrastructure for creating metrics has been exposed to allow
users to extend yardstick to work with their own metrics. You might want to
do this if you want your metrics to work with grouped data frames out of the
box, or if you want the standardization and error checking that yardstick
already provides. See vignette("custom-metrics", "yardstick")
for a few
examples.
A vignette describing the three classes of metrics used in yardstick has been
added. It also includes a list of every metric available, grouped by class.
See vignette("metric-types", "yardstick")
.
The error messages in yardstick should now be much more informative, with
better feedback about the types of input that each metric can use and about
what kinds of metrics can be used together (i.e. in metric_set()
).
There is now a grouped_df
method for conf_mat()
that returns a tibble
with a list column of conf_mat
objects.
Each metric now has its own help page. This allows us to better document the nuances of each metric without cluttering the help pages of other metrics.
broom
has been removed from Depends, and is replaced by generics
in Suggests.
tidyr
and ggplot2
have been moved to Suggests.
MLmetrics
has been removed as a dependency.
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